Research on Dynamic Measurement Method of Flow Rate in Tea Processing
Abstract
:1. Introduction
2. Materials and Methods
2.1. Sample Preparation
2.2. Experimental Device
2.3. Data Processing Method
2.3.1. Principle of VMD
- (1)
- Initialize .
- (2)
- The iterative were transformed from time domain to frequency domain by using the Parseval/Plancherel Fourier equidistant method under the norm, and the following results were obtained, as shown in Formulas (3) and (4):
- (3)
- is updated as shown in Formula (5):
- (4)
- The suspensive condition of iteration is shown in Formula (6):
2.3.2. Principle of Wavelet Threshold Denoising
2.3.3. Denoising Steps Based on VMD−WT Algorithm
- (1)
- Decompose the noisy weighing signal into multiple IMFs through VMD. Selecting appropriate decomposition layers can effectively avoid over−decomposition or under−decomposition, which has a great influence on the decomposition result of the signal. Therefore, the instantaneous frequency mean method [29] was used to solve the decomposition level in this case. Hilbert–Huang transform was performed on IMFs to calculate the mean instantaneous frequency of each IMF component, and the mean instantaneous frequency at different decomposition levels, K, was compared. When there is a significant curvature change at a certain K value, the decomposition level is K−1.
- (2)
- The modal component was determined to be signal−dominated or noise−dominated. The frequency domain analysis of the tea dynamic weighing signal was carried out to determine the frequency characteristics of the effective signal, and the modal components dominated by noise were removed according to the center frequency and bandwidth of each modal component. Then, the signal was reconstructed.
- (3)
- The reconstructed signal was denoised by the wavelet threshold.
- (4)
- The denoised signal was reconstructed by wavelet.
2.4. Evaluation Indicators
3. Results and Analysis
3.1. Spectrum Analysis of Weighing Signal
3.2. Time–Frequency Domain Analysis of Weighing Signal Based on VMD−WT
3.3. Comparison of Denoising Results Based on Different Methods
3.4. Dynamic Measurement Results of Tea Flow Based on VMD−WT
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
References
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IMF1 | IMF2 | IMF3 | IMF4 | IMF5 | |
---|---|---|---|---|---|
Main frequency | 3 Hz | 87 Hz | 216 Hz | 354 Hz | 411 Hz |
Test | 2000 g | 3000 g | 4000 g | 5000 g | ||||
---|---|---|---|---|---|---|---|---|
before | after | before | after | before | after | before | after | |
No.1 | 2.38% | 1.15% | 1.84% | 0.77% | 1.50% | 0.51% | 1.29% | 0.09% |
No.2 | 1.98% | 0.95% | 1.64% | 0.48% | 2.56% | 1.54% | 1.22% | 0.40% |
No.3 | 2.57% | 1.23% | 1.21% | 0.45% | 1.48% | 0.45% | 1.31% | 0.56% |
No.4 | 1.19% | 0.34% | 1.57% | 0.65% | 1.87% | 0.59% | 3.43% | 1.78% |
No.5 | 1.85% | 0.57% | 1.65% | 0.66% | 1.65% | 0.55% | 1.35% | 0.57% |
No.6 | 3.56% | 1.65% | 2.54% | 1.33% | 2.35% | 1.02% | 1.75% | 0.94% |
No.7 | 2.35% | 1.23% | 1.35% | 0.53% | 1.78% | 0.85% | 1.86% | 0.85% |
No.8 | 1.57% | 0.67% | 2.73% | 1.27% | 3.23% | 1.44% | 2.76% | 1.32% |
No.9 | 1.39% | 0.85% | 2.07% | 1.02% | 1.98% | 0.75% | 2.13% | 1.56% |
No.10 | 1.67% | 0.89% | 1.85% | 0.83% | 1.71% | 0.62% | 1.96% | 1.21% |
Cumulative measurement error before denoising | 1.95% | Cumulative measurement error after denoising | 0.88% |
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Zhao, Z.; Liu, G.; Wang, Y.; Peng, J.; Qiao, X.; Zhong, J. Research on Dynamic Measurement Method of Flow Rate in Tea Processing. Sensors 2022, 22, 4294. https://doi.org/10.3390/s22114294
Zhao Z, Liu G, Wang Y, Peng J, Qiao X, Zhong J. Research on Dynamic Measurement Method of Flow Rate in Tea Processing. Sensors. 2022; 22(11):4294. https://doi.org/10.3390/s22114294
Chicago/Turabian StyleZhao, Zhangfeng, Gaohong Liu, Yueliang Wang, Jiyu Peng, Xin Qiao, and Jiang Zhong. 2022. "Research on Dynamic Measurement Method of Flow Rate in Tea Processing" Sensors 22, no. 11: 4294. https://doi.org/10.3390/s22114294
APA StyleZhao, Z., Liu, G., Wang, Y., Peng, J., Qiao, X., & Zhong, J. (2022). Research on Dynamic Measurement Method of Flow Rate in Tea Processing. Sensors, 22(11), 4294. https://doi.org/10.3390/s22114294